电路原理图图像数字化

Charles R. Kelly, Jacqueline M. Cole
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引用次数: 0

摘要

电路原理图是电气工程的基础工具。我们需要一种能自动将其数字化的方法,因为这类原理图的知识库不仅能保存其功能信息,还能提供一个数据库,人们可以利用数据分析和机器学习挖掘该数据库,以预测操作效率更高的电路。我们介绍的工作流程包含一种新颖的模式识别方法和一个定制训练的光学字符识别(OCR)模型,能够以最少的配置对电路原理图图像进行数字化处理。工作流程的模式识别和光学字符识别阶段的成功率分别为 86.4% 和 99.6%。我们还提出了一个可扩展的方案,以预测电路设计效率,前提是要有一个大型的图像数据库。因此,从我们的模式识别工作流程中收集的数据可用于绘制网络图,网络图又可用于形成矩阵方程,矩阵方程包含电路中所有节点的电压和电流(以元件值表示)。这些方程可应用于电路原理图数据库,以预测新的电路设计或电路修改,从而提供更高的运行效率。此外,还可将这些网络图转换为带有集成电路重点网表的仿真程序,以进行更精确的自动计算仿真。
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Digitizing images of electrical-circuit schematics
Electrical-circuit schematics are a foundational tool in electrical engineering. A method that can automatically digitalize them is desirable since a knowledge base of such schematics could preserve their functional information as well as provide a database that one can mine to predict more operationally efficient electrical circuits using data analytics and machine learning. We present a workflow that contains a novel pattern-recognition methodology and a custom-trained Optical Character Recognition (OCR) model that can digitalize images of electrical-circuit schematics with minimal configuration. The pattern-recognition and OCR stages of the workflow yield 86.4% and 99.6% success rates, respectively. We also present an extendable option toward predictive circuit-design efficiencies, subject to a large database of images being available. Thereby, data gathered from our pattern-recognition workflow are used to draw network graphs, which are in turn employed to form matrix equations that contain the voltages and currents for all nodes in the circuit in terms of component values. These equations could be applied to a database of electrical-circuit schematics to predict new circuit designs or circuit modifications that offer greater operational efficiency. Alternatively, these network graphs could be converted into simulation programs with integrated circuit emphasis netlists to afford more accurate and computationally automated simulations.
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